| Literature DB >> 33270032 |
Anahita Davoudi1, Natalie S Lee2,3,4, Krisda H Chaiyachati3,5,6, Danielle L Mowery1,7, Corey Chivers8, Timothy Delaney5, Elizabeth L Asch3, Catherine Reitz5,6, Shivan J Mehta5,6.
Abstract
BACKGROUND: Automated texting platforms have emerged as a tool to facilitate communication between patients and health care providers with variable effects on achieving target blood pressure (BP). Understanding differences in the way patients interact with these communication platforms can inform their use and design for hypertension management.Entities:
Keywords: cluster analysis; hypertension; telemedicine; text messaging
Mesh:
Year: 2020 PMID: 33270032 PMCID: PMC7746494 DOI: 10.2196/22493
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Error messages: (a) blood pressure and (b) medication adherence.
Figure 2Flow diagram of participants included in each analysis.
Patient baseline characteristics by intervention group for original randomized control trial sans the control group (n=201).
| Characteristics | RM+SSa (n=100) | RMb (n=101) | |||
| Gender, female, n (%) | 67 (33.3) | 75 (37.3) | .07 | ||
| Age in years, mean (SD) | 51.9 (12.5) | 50.7 (10.1) | .45 | ||
|
| —c | — | <.001 | ||
|
| Black | 86 (42.8) | 95 (47.3) | — | |
|
| White | 9 (4.5) | 3 (1.5) | — | |
|
| Other | 1 (0.5) | 5 (2.5) | — | |
|
| Unknown | 4 (2.0) | 0 (0) | — | |
|
| — | — | .96 | ||
|
| Hispanic or Latino | 0 (0) | 1 (0.5) | — | |
|
| non-Hispanic or Latino | 99 (49.3) | 100 (49.8) | — | |
|
| Unknown | 1 (0.5) | 0 (0) | — | |
|
| — | — | <.001 | ||
|
| Private | 42 (20.9) | 56 (27.9) | — | |
|
| Medicaid | 23 (11.4) | 28 (13.9) | — | |
|
| Medicare | 33 (16.4) | 15 (7.5) | — | |
|
| None | 1 (0.5) | 2 (1.0) | — | |
|
| Unknown | 1 (0.5) | 0 (0) | — | |
| Texts per patient user, m (SD) | 66.9 (27.3) | 57.3 (23.3) | .005 | ||
| Active rate (patient sent at least one message), m (SD) days | 139.5 (20.0) | 138.3 (15.8) | .54 | ||
| Processed responses–correctly formatted (BPd), mean (SD) | 34.4 (11.4) | 32.3 (13.0) | .14 | ||
| Unprocessed responses–error message triggered (BP), mean (SD) | 0.8 (1.3) | 0.5 (0.7) | .02 | ||
| Processed messages–medication adherence, mean (SD) | 13.0 (4.6) | 12.2 (4.9) | .18 | ||
| Unprocessed messages–medication adherence, mean (SD) | 0.9 (1.7) | 0.8 (1.3) | .12 | ||
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| Character count (per message) | 6.7 (10.2) | 5.8 (7.0) | .65 | |
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| Token count (per message) | 1.7 (2.7) | 1.4 (1.9) | .92 | |
|
| Word count (per message) | 1.6 (2.5) | 1.3 (1.7) | .75 | |
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| Number count (per message) | 3.7 (3.7) | 3.7 (2.1) | .83 | |
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| Morning, per user | 50.7 (27.4) | 42.3 (24.0) | .02 | |
|
| Afternoon, per user | 9.8 (8.1) | 8.7 (7.3) | .33 | |
|
| Night, per user | 7.2 (7.6) | 6.8 (5.6) | .73 | |
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| Late night, per user | 4.1 (3.9) | 4.1 (3.6) | .92 | |
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| |||||
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| Per day | 16.9 (11.1) | 14.1 (9.9) | <.001 | |
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| Per week | 109.7 (73.6) | 87.6 (65.9) | .08 | |
|
| Per month | 418.1 (338.6) | 361.4 (291.7) | .62 | |
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| First month, per user | 19.7 (7.1) | 17.5 (5.5) | .02 | |
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| Second month, per user | 17.7 (7.8) | 15.2 (6.3) | .02 | |
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| Third month, per user | 16.5 (6.8) | 14.5 (5.5) | .03 | |
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| Fourth month, per user | 14.2 (7.0) | 12.6 (5.3) | .08 | |
aRM+SS: remote text messaging with social support.
bRM: remote text messaging without social support.
cNot applicable.
dBP: blood pressure.
Figure 3Program conformity clusters: (a) number of unprocessed responses (errors) throughout the 4-month period and (b) frequency of the conformer patterns and trends of errors over time based on program conformity user category.
Figure 4Engagement style: enthusiast—radial distribution of feature values.
Figure 6Engagement style: minimalist—radial distribution of feature values.
Figure 5Engagement style: student—radial distribution of feature values.
Distribution of participant characteristics by engagement style.
| Characteristic | Enthusiast (n=17) | Student (n=45) | Minimalist (n=112) | |
| Gender, female, n (%) | 12 (71) | 25 (56) | 82 (73) | |
| Age in years, mean (SD) | 57.9 (7.3) | 47.3 (11.8) | 52.4 (11.1) | |
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| ||||
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| Black | 17 (100) | 40 (89) | 99 (88) |
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| White | 0 (0) | 1 (2) | 8 (7) |
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| Other | 0 (0) | 3 (7) | 2 (2) |
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| Unknown | 0 (0) | 1 (2) | 3 (3) |
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| Remote monitoring | 4 (24) | 26 (58) | 57 (51) |
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| Remote monitoring + social support | 13 (77) | 19 (42) | 55 (49) |
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| 1 intent (%) | 586 (83) | 345 (87) | 694 (86) |
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| 2 intents (%) | 114 (16) | 43 (11) | 103 (13) |
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| 3 intents (%) | 5 (1) | 5 (1) | 8 (1) |
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| 4+ intents (%) | 2 (1) | 2 (1) | 1 (1) |
Association between interaction phenotypes, program conformity, and engagement style, with BP outcomes (n=155).
| Interaction phenotype type | Total, n (%) | Users achieving target BPa, n (%) | ||
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| ||||
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| Perfect user | 51 (32.9) | 31 (60.7) | .12 |
|
| Adaptive user | 66 (42.6) | 39 (59.1) | .14 |
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| Nonadaptive user | 38 (24.5) | 23 (60.5) | .19 |
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| Enthusiast | 17 (11.0) | 7 (41.2) | .47 |
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| Student | 35 (22.6) | 19 (54.3) | .61 |
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| Minimalist | 103 (66.5) | 67 (65.0) | <.001 |
aBP: blood pressure.